Reverse curriculum generation for reinforcement learning

C Florensa, D Held, M Wulfmeier… - … on robot learning, 2017 - proceedings.mlr.press
Conference on robot learning, 2017proceedings.mlr.press
Many relevant tasks require an agent to reach a certain state, or to manipulate objects into a
desired configuration. For example, we might want a robot to align and assemble a gear
onto an axle or insert and turn a key in a lock. These goal-oriented tasks present a
considerable challenge for reinforcement learning, since their natural reward function is
sparse and prohibitive amounts of exploration are required to reach the goal and receive
some learning signal. Past approaches tackle these problems by exploiting expert …
Abstract
Many relevant tasks require an agent to reach a certain state, or to manipulate objects into a desired configuration. For example, we might want a robot to align and assemble a gear onto an axle or insert and turn a key in a lock. These goal-oriented tasks present a considerable challenge for reinforcement learning, since their natural reward function is sparse and prohibitive amounts of exploration are required to reach the goal and receive some learning signal. Past approaches tackle these problems by exploiting expert demonstrations or by manually designing a task-specific reward shaping function to guide the learning agent. Instead, we propose a method to learn these tasks without requiring any prior knowledge other than obtaining a single state in which the task is achieved. The robot is trained in “reverse", gradually learning to reach the goal from a set of starting positions increasingly far from the goal. Our method automatically generates a curriculum of starting positions that adapts to the agent’s performance, leading to efficient training on goal-oriented tasks. We demonstrate our approach on difficult simulated navigation and fine-grained manipulation problems, not solvable by state-of-the-art reinforcement learning methods.
proceedings.mlr.press
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